The Fisher information constitutes a natural measure for the sensitivity of a probability distribution with respect to a set of parameters. An implementation of the stationarity principle for synaptic learning in terms of the Fisher information results in a Hebbian self-limiting learning rule for synaptic plasticity. In the present work, we study the dependence of the solutions to this rule in terms of the moments of the input probability distribution and find a preference for non-Gaussian directions, making it a suitable candidate for independent component analysis (ICA). We confirm in a numerical experiment that a neuron trained under these rules is able to find the independent components in the non-linear bars problem. The specific form ...
In experimental and theoretical neuroscience, synaptic plasticity has dominated the area of neural p...
In the context of parameter estimation and model selection, it is only quite recently that a direct ...
In the context of parameter estimation and model selection, it is only quite recently that a direct ...
The Fisher information constitutes a natural measure for the sensitivity of a probability distributi...
The Fisher information constitutes a natural measure for the sensitivity of a probability distributi...
Neural information processing includes the extraction of information present in the statistics of af...
Generating functionals may guide the evolution of a dynamical system and constitute a possible route...
Intrinsic plasticity (IP) refers to a neuron’s ability to regulate its firing activity by adapting i...
Although models based on independent component analysis (ICA) have been successful in explaining var...
<p>(A) Schematic figure of the model with four sources. (B) Synaptic weight development in input neu...
We utilise an information theoretic criterion for exploratory projection pursuit (EPP) and have show...
Self-organization provides a framework for the study of systems in which complex patterns emerge fro...
We propose a nonlinear self-organizing network which solely employs computationally simple hebbian a...
With this paper we aim to present a new class of learning models for linear as well as non-linear ne...
We propose a nonlinear self-organising network which solely employs computationally simple hebbian a...
In experimental and theoretical neuroscience, synaptic plasticity has dominated the area of neural p...
In the context of parameter estimation and model selection, it is only quite recently that a direct ...
In the context of parameter estimation and model selection, it is only quite recently that a direct ...
The Fisher information constitutes a natural measure for the sensitivity of a probability distributi...
The Fisher information constitutes a natural measure for the sensitivity of a probability distributi...
Neural information processing includes the extraction of information present in the statistics of af...
Generating functionals may guide the evolution of a dynamical system and constitute a possible route...
Intrinsic plasticity (IP) refers to a neuron’s ability to regulate its firing activity by adapting i...
Although models based on independent component analysis (ICA) have been successful in explaining var...
<p>(A) Schematic figure of the model with four sources. (B) Synaptic weight development in input neu...
We utilise an information theoretic criterion for exploratory projection pursuit (EPP) and have show...
Self-organization provides a framework for the study of systems in which complex patterns emerge fro...
We propose a nonlinear self-organizing network which solely employs computationally simple hebbian a...
With this paper we aim to present a new class of learning models for linear as well as non-linear ne...
We propose a nonlinear self-organising network which solely employs computationally simple hebbian a...
In experimental and theoretical neuroscience, synaptic plasticity has dominated the area of neural p...
In the context of parameter estimation and model selection, it is only quite recently that a direct ...
In the context of parameter estimation and model selection, it is only quite recently that a direct ...